Multi-Horizon Wind Power Forecasting Using Multi-Modal Spatio-Temporal Neural Networks

Author:

Miele Eric Stefan1ORCID,Ludwig Nicole2ORCID,Corsini Alessandro1ORCID

Affiliation:

1. Department of Mechanical and Aerospace Engineering, Sapienza University of Rome, 00184 Rome, Italy

2. Cluster of Excellence–Machine Learning for Science, University of Tübingen, 72076 Tübingen, Germany

Abstract

Wind energy represents one of the leading renewable energy sectors and is considered instrumental in the ongoing decarbonization process. Accurate forecasts are essential for a reliable large-scale wind power integration, allowing efficient operation and maintenance, planning of unit commitment, and scheduling by system operators. However, due to non-stationarity, randomness, and intermittency, forecasting wind power is challenging. This work investigates a multi-modal approach for wind power forecasting by considering turbine-level time series collected from SCADA systems and high-resolution Numerical Weather Prediction maps. A neural architecture based on stacked Recurrent Neural Networks is proposed to process and combine different data sources containing spatio-temporal patterns. This architecture allows combining the local information from the turbine’s internal operating conditions with future meteorological data from the surrounding area. Specifically, this work focuses on multi-horizon turbine-level hourly forecasts for an entire wind farm with a lead time of 90 h. This work explores the impact of meteorological variables on different spatial scales, from full grids to cardinal point features, on wind power forecasts. Results show that a subset of features associated with all wind directions, even when spatially distant, can produce more accurate forecasts with respect to full grids and reduce computation times. The proposed model outperforms the linear regression baseline and the XGBoost regressor achieving an average skill score of 25%. Finally, the integration of SCADA data in the training process improved the predictions allowing the multi-modal neural network to model not only the meteorological patterns but also the turbine’s internal behavior.

Funder

German Research Foundation

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous),Building and Construction

Reference26 articles.

1. The techno-economic potential of offshore wind energy with optimized future turbine designs in Europe;Caglayan;Appl. Energy,2019

2. Integration of large-scale renewable energy into bulk power systems: From planning to operation;Belmans;Econ. Energy Environ.,2019

3. Intermittent and stochastic character of renewable energy sources: Consequences, cost of intermittence and benefit of forecasting;Notton;Renew. Sustain. Energy Rev.,2018

4. A review of wind power forecasting models;Wang;Energy Procedia,2011

5. Current perspective on the accuracy of deterministic wind speed and power forecasting;Yousuf;IEEE Access,2019

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